使用时频分析加速预测早产儿心动过缓

Md Shaad Mahmud, Honggang Wang, Yong K Kim
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引用次数: 6

摘要

高性能数据处理算法的快速发展和可穿戴技术的融合,使我们能够持续监测婴儿的健康状况。然而,监测早产儿仍然是一个挑战,因为他们的尺寸小得可怕,他们的皮肤尚未发育。在这篇论文中,我们展示了一个完整监测早产儿和实时加速预测心动过缓的框架。实时预测新生儿重症监护病房的心动过缓发作有可能为这些新生儿提供高质量的护理。在提出的系统中,我们结合了一个多gpu梯度增强算法,该算法能够优于传统CPU的性能。这可以克服护士手动维护的进度报告,这是新生儿重症监护室的一个主要障碍。系统在基于Java的响应式应用程序中映射工作流,以提供统计信息以及增长图表和报告。该系统以特定的间隔提取数据,为基于GPU的极端梯度增强模型提供数据。在婴儿心率的时间和频域上进行特征提取,以预测心动过缓的发作。与其他同类产品的模型相比,该系统的平均准确率为86%,检测时间最短,可以缩短护理时间,最大限度地减少技能差距,分析早期疾病死亡,降低早产儿的发病率和死亡率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accelerated Prediction of Bradycardia in Preterm Infants Using Time-Frequency Analysis
The rapid growth of the high-performance data processing algorithms and fusion of wearable technologies has enabled us to continuously monitor the health status of infants. However, monitoring preterm infants is still a challenge due to their frightfully tiny size and their undeveloped skin. In this paper, we have demonstrated a framework of complete monitoring of the preterm infants and real-time accelerated prediction of bradycardia. Real-time prediction of bradycardia episodes in the NICU has the potential to provide quality care to these neonates. In the proposed system we incorporated a multi-GPU gradient boosting algorithm that was able to outperform the traditional CPU’s performance. This can overcome the manually maintained progress reports by nurses, which is a major hurdle in the NICU. The system maps the workflow in a Java based responsive application to provide statistical information along with growth charts and reports. The system extracts data with a specific interval to feed the GPU based extreme gradient boosting model. The feature extraction was performed on the time and frequency domain of the heart rate of infants to predict an episode of bradycardia. With an average accuracy of 86% and shortest detection time when compared to the models of other similar products, the proposed system showed that it can improve care time, minimize the skill gap, analyze early disease perdition, and reduce preterm infant’s morbidity and mortality.
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